A Framework for Determining the Big Five Personality Traits Using Machine Learning Classification through Graphology

Samsuryadi, Rudi Kurniawan, Julian Supardi, Sukemi, F. Mohamad
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引用次数: 2

Abstract

Along with the progress of the times, the development of graphology has changed towards computerization. The fundamental problem in automated graphology is how to determine personality traits through digital handwriting using the principles of graphology. Although various models and approaches have been developed in research related to automated graphology, there are still obstacles to overcome such as the selection of preprocessing techniques and image processing algorithms to extract handwriting features and proper classification techniques to get maximum accuracy. Therefore, this study aims to design a reliable framework using image processing and machine learning approaches such as filtering, thresholding, and normalization to determine the personality traits through handwriting features. Then, handwriting features are classified according to the Big Five model. Experiments using the decision tree, SVM (kernel RBF), and KNN produced an accuracy above 99%. These results indicated that the proposed framework can be well applied to predict the personality of the Big Five model through handwriting analysis features.
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通过笔迹学使用机器学习分类确定五大人格特征的框架
随着时代的进步,笔迹学的发展已向电脑化方向发展。自动化笔迹学的基本问题是如何利用笔迹学原理通过数字笔迹来确定个性特征。尽管在自动化笔迹学的研究中已经发展了各种各样的模型和方法,但仍然存在一些需要克服的障碍,例如选择预处理技术和图像处理算法来提取笔迹特征,以及适当的分类技术以获得最大的准确性。因此,本研究旨在设计一个可靠的框架,利用图像处理和机器学习方法,如滤波、阈值分割、归一化等,通过笔迹特征来确定人格特征。然后,根据Big Five模型对笔迹特征进行分类。使用决策树、支持向量机(核RBF)和KNN的实验产生了99%以上的准确率。这些结果表明,该框架可以很好地应用于通过笔迹分析特征来预测大五人格模型。
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